| DevOps | Integrates development and IT operations to enhance efficiency, reliability, and security. | 
  | MLOps | Streamlines testing and deployment of machine learning models for data scientists and engineers. | 
  | DataOps | Optimizes data pipelines to connect diverse data sources and enable scalable workflows. | 
  | AIOps | Applies AI within IT operations to improve processes and outcomes. | 
  | ModelOps | Manages and governs models in production for IT or business operations teams. | 
  | NoOps | Automates IT infrastructure to eliminate the need for manual intervention. | 
  | DevSecOps | Integrates security checks and testing into the DevOps workflow from the start. | 
  | GitOps | Uses Git to automate the continuous delivery pipeline, serving as the single source of truth. | 
  | ITOps | Prioritizes stability and long-term reliability over speed and agility. (Opposite: CloudOps) | 
  | CloudOps | Emphasizes distribution, statelessness, and scalability. (Opposite: ITOps) | 
  | CIOps | Manages continuous integration systems to run builds, tests, and deployments, requiring infrastructure configuration by CI operators or administrators. |